Free Coupon Certified Reinforcement Learning [100% OFF]

Deep RL & Sequential Decision Making: Master Q-Learning, Policy Gradients, DQN, and PPO Implementation for Certification

Free Coupon Certified Reinforcement Learning [100% OFF]

Take advantage of a 100% OFF coupon code for the 'Certified Reinforcement Learning' course, created by Muhammad Shafiq, available on Udemy.

This course, updated on November 04, 2025 and will be expired on 2025/11/08

This course provides of expert-led training in English , designed to boost your Other IT & Software skills.

Highly rated at 0.0-star stars from 0 reviews, it has already helped 320 students.

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Become a Certified Reinforcement Learning Expert Reinforcement Learning (RL) is the cutting edge of AI, enabling agents to learn optimal behavior through trial and error. This comprehensive course takes you from the foundational mathematical principles of Markov Decision Processes (MDPs) to the implementation of state-of-the-art Deep Reinforcement Learning (DRL) algorithms. Unlike theoretical lectures, this curriculum is heavily focused on practical implementation using Python, TensorFlow, and PyTorch, ensuring you gain hands-on experience solving real-world sequential decision-making problems, from game playing to robotics control.

Core Value Proposition and Certification Readiness This course is specifically structured to prepare you for industry-recognized RL certifications. We cover the entire spectrum of RL knowledge required by professional AI roles, ensuring conceptual clarity and coding proficiency. You will master classic tabular methods (Dynamic Programming, Monte Carlo, Temporal Difference) before diving deep into complex DRL frameworks (DQN, Policy Gradients, Actor-Critic, PPO). What makes this course unique is the balance between robust theoretical understanding and project-based learning. By the end, you won't just understand the algorithms; you'll have a portfolio of working RL agents and the confidence to apply these techniques in complex, large-scale environments.

Comprehensive Curriculum Breakdown We start with the fundamentals: understanding agents, environments, rewards, and the mathematical machinery of MDPs. We then progress systematically through model-based and model-free methods. The second half of the course focuses exclusively on modern Deep RL, teaching you how to integrate neural networks to handle continuous actions and high-dimensional state spaces. Every concept is backed by practical coding examples and challenging lab exercises.